Representation Learning with Semantic-aware Instance and Sparse Token Alignments
By: Phuoc-Nguyen Bui , Toan Duc Nguyen , Junghyun Bum and more
Medical contrastive vision-language pre-training (VLP) has demonstrated significant potential in improving performance on downstream tasks. Traditional approaches typically employ contrastive learning, treating paired image-report samples as positives and unpaired ones as negatives. However, in medical datasets, there can be substantial similarities between images or reports from different patients. Rigidly treating all unpaired samples as negatives, can disrupt the underlying semantic structure and negatively impact the quality of the learned representations. In this paper, we propose a multi-level alignment framework, Representation Learning with Semantic-aware Instance and Sparse Token Alignments (SISTA) by exploiting the semantic correspondence between medical image and radiology reports at two levels, i.e., image-report and patch-word levels. Specifically, we improve the conventional contrastive learning by incorporating inter-report similarity to eliminate the false negatives and introduce a method to effectively align image patches with relevant word tokens. Experimental results demonstrate the effectiveness of the proposed framework in improving transfer performance across different datasets on three downstream tasks: image classification, image segmentation, and object detection. Notably, our framework achieves significant improvements in fine-grained tasks even with limited labeled data. Codes and pre-trained models will be made available.
Similar Papers
Bridged Semantic Alignment for Zero-shot 3D Medical Image Diagnosis
CV and Pattern Recognition
Helps doctors find rare diseases in scans.
Comprehensive language-image pre-training for 3D medical image understanding
CV and Pattern Recognition
Helps doctors find sickness in scans.
SCALE-VLP: Soft-Weighted Contrastive Volumetric Vision-Language Pre-training with Spatial-Knowledge Semantics
CV and Pattern Recognition
Helps doctors understand 3D body scans better.